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Arc spectral processing technique with its application to wire feed monitoring in Al-Mg alloy pulsed gas tungsten arc welding

机译:电弧光谱处理技术及其在铝镁合金脉冲气体保护钨极电弧焊送丝监控中的应用

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摘要

The principal component analysis (PCA) is applied for three purposes: spectral line identification, redundancy removal and spectral characteristic signals extraction. The spectral information is classified as the first and the second principal components, associated with Ar I lines and metal lines, respectively. With the mean value method, pulse interference resulted from the pulse current is eliminated from the spectral signals. The relationships among these extracted signals and the defects resulted from wire feed are discussed and the results show that the second principal component is closely related to these defects while the first principal component has relationship with the arc states. To test validity of the extracted signals, a back-propagation neural network is designed and appropriately trained with "Early Stopping" technique to detect these defects automatically.
机译:主成分分析(PCA)用于三个目的:谱线识别,冗余消除和谱特征信号提取。光谱信息被分类为分别与Ar I线和金属线相关联的第一和第二主成分。利用平均值法,从频谱信号中消除了由脉冲电流引起的脉冲干扰。讨论了这些提取信号与焊丝送入缺陷之间的关系,结果表明第二主成分与这些缺陷密切相关,而第一主成分与电弧状态有关系。为了测试提取信号的有效性,设计了反向传播神经网络,并使用“早期停止”技术对其进行了适当的训练,以自动检测这些缺陷。

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